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Subject-specific Shoulder Muscle Attachment Region Prediction Using Statistical Shape Models: A Validity Study

机译:使用统计形状模型预测主题特异性肩部肌肉附着区域:有效性研究

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Subject-specific musculoskeletal models can predict accurate joint and muscle biomechanics thereby helping clinicians and surgeons. Current modeling strategies do not incorporate accurate subject-specific muscle parameters. This study reports a statistical shape model (SSM) based method to predict subject-specific muscle attachment regions on shoulder bones and illustrates the concurrent validity of the predictions. Augmented SSMs of scapula and humerus bones were built using bone meshes and five muscle attachment (origin/insertion) regions which play important role in the shoulder motion and function. Muscle attachments included Subscapularis, Supraspinatus, Infraspinatus, Teres Major and Teres Minor on both the bones. The regions were represented by subset of vertices on the bone meshes and were tracked using vertex identifiers. Subject-specific muscle attachment regions were predicted using external set of bones not used in building the SSMs. Validity of predictions was determined by visual inspection and also by using four similarity measures between predicted and manually segmented regions. Excellent concurrent validity was found indicating the higher accuracy of predictions. This method can be effectively employed in modeling pipelines or in automatic segmentation of medical images. Further validations are warranted on all the muscles of the shoulder complex.
机译:主题特异性肌肉骨骼模型可以预测准确的关节和肌肉生物力学,从而帮助临床医生和外科医生。目前的建模策略不包含准确的主题特定肌肉参数。本研究报告了一种基于统计形状模型(SSM)的方法,以预测肩骨骨骼上的特定肌肉附着区域,并说明预测的并发有效性。使用骨骼网和五个肌肉附着(起源/插入)区域建造了肩胛骨和肱骨骨骼的增强SSM,这在肩部运动和功能中起重要作用。肌肉附着包括亚像有独心的,冈上肌,互联网,在骨骼上的尺寸和特蕾丝。这些区域由骨骼网上的顶点子集表示,并使用顶点标识符跟踪。使用未用于构建SSMS的外部骨骼,预测特定于特定的肌肉附着区域。通过目视检查确定预测的有效性,并且还通过在预测和手动分段区域之间使用四个相似度措施来确定。发现出色的并发有效性表明预测的更高准确性。该方法可以有效地用于建模管道或医学图像的自动分段中。在肩部复合体的所有肌肉上有权进一步验证。

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